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首页> 外文期刊>Multimedia Tools and Applications >Towards a computer aided diagnosis (CAD) for brain MRI glioblastomas tumor exploration based on a deep convolutional neuronal networks (D-CNN) architectures
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Towards a computer aided diagnosis (CAD) for brain MRI glioblastomas tumor exploration based on a deep convolutional neuronal networks (D-CNN) architectures

机译:基于深度卷积神经元网络(D-CNN)架构,朝向计算机辅助诊断(CAD)进行脑MRI GLIOBLASTOMAS肿瘤勘探

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摘要

Manuel brain glioblastomas tumor exploration through MRI modalities is time-consuming. It is considered as a harmful and critical task due to highly inhomogeneous tumor regions composition. For this reason, clinicians recommend the Computer-Aided Diagnosis (CAD) tools to ensure a more accurate diagnostic. Based on convolutional Deep-Learning algorithms, this paper investigates a fully automatic CAD for brain Glioblastomas tumors exploration including three steps: pre-processing, segmentation, and finally classification. A denoising and an automatic contrast enhancement method have been applied to preprocess the MRI scans. A Multi-Modal Cascaded U-net architecture, based on Fully Convolutional deep Network (FCN), has been adopted for the Region of Interest (ROI) extraction and finally, Deep Convolutional Neural Network (D-CNN) architecture has been used to classify brain glioblastomas tumor into High-Grade (HG) and Low-Grade (LG). Experiments were performed on the Multimodal Brain Tumor Segmentation Challenge BraTS-2018 datasets benchmark. Several validations metric have been adopted to assess the CAD's performances. The Dice Metric (DM) parameter has been calculated between the obtained segmentation results and the available ground truth data. The accuracy parameter has been computed for classification performance evaluation. The higher DM and accuracy values could attest the performance and the efficiency of the proposed CAD tool.
机译:曼努埃尔脑胶质细胞瘤通过MRI方式肿瘤勘探是耗时的。由于高度不均匀的肿瘤区域组合物,它被认为是一种有害和关键的任务。出于这个原因,临床医生建议计算机辅助诊断(CAD)工具,以确保更准确的诊断。本文基于卷积的深度学习算法,研究了脑胶质细胞肿瘤肿瘤的全自动CAD,包括三个步骤:预处理,分割,最后分类。已经应用了去噪和自动对比度增强方法以预处理MRI扫描。基于完全卷积的深网络(FCN)的多模级级联U-Net架构已经用于感兴趣的区域(ROI)提取,最后,深度卷积神经网络(D-CNN)架构已被用于分类脑胶质细胞瘤肿瘤成高级(Hg)和低等级(Lg)。对多模式脑肿瘤分割挑战Brats-2018数据集基准进行实验。已经采用了几项验证度量来评估CAD的表现。已经计算了DICE度量(DM)参数在获得的分段结果和可用的地面真实数据之间计算。已经计算了准确性参数以进行分类性能评估。更高的DM和精度值可以证明所提出的CAD工具的性能和效率。

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